Learning for Advanced Motion Control

T. Oomen
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引用次数: 11

Abstract

Iterative Learning Control (ILC) can achieve perfect tracking performance for mechatronic systems. The aim of this paper is to present an ILC design tutorial for industrial mechatronic systems. First, a preliminary analysis reveals the potential performance improvement of ILC prior to its actual implementation. Second, a frequency domain approach is presented, where fast learning is achieved through noncausal model inversion, and safe and robust learning is achieved by employing a contraction mapping theorem in conjunction with nonparametric frequency response functions. The approach is demonstrated on a desktop printer. Finally, a detailed analysis of industrial motion systems leads to several shortcomings that obstruct the widespread implementation of ILC algorithms. An overview of recently developed algorithms, including extensions using machine learning algorithms, is outlined that are aimed to facilitate broad industrial deployment.
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学习先进的运动控制
迭代学习控制(ILC)对机电系统具有良好的跟踪性能。本文的目的是提供工业机电系统的ILC设计教程。首先,在实际实施ILC之前,初步分析揭示了其潜在的性能改进。其次,提出了一种频域方法,其中通过非因果模型反演实现快速学习,并通过结合非参数频率响应函数使用收缩映射定理实现安全鲁棒学习。该方法在桌面打印机上进行了演示。最后,对工业运动系统的详细分析导致了阻碍ILC算法广泛实施的几个缺点。概述了最近开发的算法,包括使用机器学习算法的扩展,旨在促进广泛的工业部署。
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